Vapnik Chervonenkis theory (also known as VC theory) was developed during 1960-1990 by Vladimir Vapnik and Alexey Chervonenkis. The theory is a form of computational learning theory, which attempts to explain the learning process from a statistical point of view.
VC theory is also referred to as statistical learning theory by Vapnik and his close colleagues.
VC theory covers four parts (as explained in The Nature of Statistical Learning Theory):
The last part of VC theory introduced a well-known learning algorithm: the support vector machine.
VC theory contains important concepts such as the VC dimension and structural risk minimization. This theory is related to mathematical subjects such as:
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